Hanne, Thomas

Lade...
Profilbild
E-Mail-Adresse
Geburtsdatum
Projekt
Organisationseinheiten
Berufsbeschreibung
Nachname
Hanne
Vorname
Thomas
Name
Hanne, Thomas

Suchergebnisse

Gerade angezeigt 1 - 3 von 3
  • Publikation
    Hybridized white learning in cloud-based picture archiving and communication system for predictability and interpretability
    (Springer, 2020) Tallón-Ballesteros, Antonio J.; Fong, Simon; Li, Tengyue; Liu, Lian-sheng; Hanne, Thomas; Lin, Weiwei; de la Cal, Enrique Antonio; Villar Flecha, José Ramón; Quintián, Héctor; Corchado, Emilio [in: Hybrid Artificial Intelligent Systems. 15th international conference, HAIS 2020, Gijón, Spain, November 11-13, 2020, proceedings]
    04B - Beitrag Konferenzschrift
  • Publikation
    Gaussian guided self-adaptive wolf search algorithm
    (MDPI, 2018) Song, Qun; Fong, Simon; Deb, Suash; Hanne, Thomas [in: Entropy]
    Nowadays, swarm intelligence algorithms are becoming increasingly popular for solving many optimization problems. The Wolf Search Algorithm (WSA) is a contemporary semi-swarm intelligence algorithm designed to solve complex optimization problems and demonstrated its capability especially for large-scale problems. However, it still inherits a common weakness for other swarm intelligence algorithms: that its performance is heavily dependent on the chosen values of the control parameters. In 2016, we published the Self-Adaptive Wolf Search Algorithm (SAWSA), which offers a simple solution to the adaption problem. As a very simple schema, the original SAWSA adaption is based on random guesses, which is unstable and naive. In this paper, based on the SAWSA, we investigate the WSA search behaviour more deeply. A new parameter-guided updater, the Gaussian-guided parameter control mechanism based on information entropy theory, is proposed as an enhancement of the SAWSA. The heuristic updating function is improved. Simulation experiments for the new method denoted as the Gaussian-Guided Self-Adaptive Wolf Search Algorithm (GSAWSA) validate the increased performance of the improved version of WSA in comparison to its standard version and other prevalent swarm algorithms.
    01A - Beitrag in wissenschaftlicher Zeitschrift
  • Publikation
    Solving the Permutation Flow Shop Problem with Firefly Algorithm
    (08.12.2014) Fong, Simon; Zhuang, Yan; Deb, Suash; Hanne, Thomas
    06 - Präsentation